整合机器学习和结构分析预测肽抗生物膜效应:生物膜相关感染药物发现的进展

IF 1.8 4区 医学 Q3 PHARMACOLOGY & PHARMACY
Fatemeh Ebrahimi Tarki, Mahboobeh Zarrabi, Ahya Abdiali, Mahkame Sharbatdar
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引用次数: 0

摘要

背景:抗生素耐药性的上升已经成为一个主要问题,标志着抗生素黄金时代的结束。细菌生物膜对抗生素具有较高的耐药性,是抗生素耐药性产生的重要因素。因此,迫切需要发现具有特异性的新型治疗剂来有效对抗生物膜相关感染。研究表明,多肽作为抗菌药物具有广阔的应用前景。目的:本研究旨在建立一种经济高效的计算方法来预测多肽的抗生物膜作用。这种方法可以帮助解决设计具有强抗菌膜特性的肽的复杂挑战,这是一项既具有挑战性又昂贵的任务。方法:将含有抗菌膜活性超过50%的肽序列的阳性文库与含有群体感应肽的阴性文库进行组装。对于每个肽序列,考虑初级结构、氨基酸顺序、理化性质及其分布,计算特征向量。使用多个监督学习算法对具有显著抗生物膜效应的肽进行分类,以进行后续实验评估。结果:计算方法预测多肽的抗菌膜效应具有较高的准确性,准确度为99%,精密度为99%,马修相关系数(MCC)为0.97,F1评分为0.99。这种计算方法的性能水平与以前的方法相当。本研究提出了一种将特征空间与高抗菌膜活性相结合的新方法。结论:在本研究中,我们开发了一种可靠且经济的方法来预测多肽的抗生物膜效应。这种方法允许鉴定具有大量抗生素膜活性的肽序列,用于进一步的实验研究。可访问的源代码和本研究的原始数据可以在网上(hiABF)找到,提供方便的访问和将来的更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Machine Learning and Structural Analysis for Predicting Peptide Antibiofilm Effects: Advancements in Drug Discovery for Biofilm-Related Infections
Background: The rise of antibiotic resistance has become a major concern, signaling the end of the golden age of antibiotics. Bacterial biofilms, which exhibit high resistance to antibiotics, significantly contribute to the emergence of antibiotic resistance. Therefore, there is an urgent need to discover new therapeutic agents with specific characteristics to effectively combat biofilm-related infections. Studies have shown the promising potential of peptides as antimicrobial agents. Objectives: This study aimed to establish a cost-effective and streamlined computational method for predicting the antibiofilm effects of peptides. This method can assist in addressing the intricate challenge of designing peptides with strong antibiofilm properties, a task that can be both challenging and costly. Methods: A positive library, consisting of peptide sequences with antibiofilm activity exceeding 50%, was assembled, along with a negative library containing quorum-sensing peptides. For each peptide sequence, feature vectors were calculated, while considering the primary structure, the order of amino acids, their physicochemical properties, and their distributions. Multiple supervised learning algorithms were used to classify peptides with significant antibiofilm effects for subsequent experimental evaluations. Results: The computational approach exhibited high accuracy in predicting the antibiofilm effects of peptides, with accuracy, precision, Matthew's correlation coefficient (MCC), and F1 score of 99%, 99%, 0.97, and 0.99, respectively. The performance level of this computational approach was comparable to that of previous methods. This study introduced a novel approach by combining the feature space with high antibiofilm activity. Conclusions: In this study, a reliable and cost-effective method was developed for predicting the antibiofilm effects of peptides using a computational approach. This approach allows for the identification of peptide sequences with substantial antibiofilm activities for further experimental investigations. Accessible source codes and raw data of this study can be found online (hiABF), providing easy access and enabling future updates.
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来源期刊
CiteScore
3.40
自引率
6.20%
发文量
52
审稿时长
2 months
期刊介绍: The Iranian Journal of Pharmaceutical Research (IJPR) is a peer-reviewed multi-disciplinary pharmaceutical publication, scheduled to appear quarterly and serve as a means for scientific information exchange in the international pharmaceutical forum. Specific scientific topics of interest to the journal include, but are not limited to: pharmaceutics, industrial pharmacy, pharmacognosy, toxicology, medicinal chemistry, novel analytical methods for drug characterization, computational and modeling approaches to drug design, bio-medical experience, clinical investigation, rational drug prescribing, pharmacoeconomics, biotechnology, nanotechnology, biopharmaceutics and physical pharmacy.
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